Network Attack Detection and Defense - AI-Powered Threats and Responses (Dagstuhl Seminar 23431)

Authors Sven Dietrich, Frank Kargl, Hartmut König, Pavel Laskov, Artur Hermann and all authors of the abstracts in this report



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Author Details

Sven Dietrich
  • City University of New York, US
Frank Kargl
  • Universität Ulm, DE
Hartmut König
  • ZITiS München, DE
Pavel Laskov
  • Universität Liechtenstein, LI
Artur Hermann
  • Universität Ulm, DE
and all authors of the abstracts in this report

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Sven Dietrich, Frank Kargl, Hartmut König, Pavel Laskov, and Artur Hermann. Network Attack Detection and Defense - AI-Powered Threats and Responses (Dagstuhl Seminar 23431). In Dagstuhl Reports, Volume 13, Issue 10, pp. 90-129, Schloss Dagstuhl – Leibniz-Zentrum für Informatik (2024)
https://doi.org/10.4230/DagRep.13.10.90

Abstract

This report documents the program and the findings of Dagstuhl Seminar 23431 "Network Attack Detection and Defense - AI-Powered Threats and Responses". With the emergence of artificial intelligence (AI), attack detection and defense are taking on a new level of quality. Artificial intelligence will promote further automation of attacks. There are already examples of this, such as the Deep Locker malware. It is expected that we will soon face a situation in which malware and attacks will become more and more automated, intelligent, and AI-powered. Consequently, today’s threat response systems will become more and more inadequate, especially when they rely on manual intervention of security experts and analysts. The main objective of the seminar was to assess the state of the art and potentials that AI advances create for both attackers and defenders. The seminar continued the series of Dagstuhl events "Network Attack Detection and Defense" held in 2008, 2012, 2014, and 2016. The objectives of the seminar were threefold, namely (1) to investigate various scenarios of AI-based malware and attacks, (2) to debate trust in AI and modeling of threats against AI, and (3) to propose methods and strategies for AI-powered network defenses. At the seminar, which brought together participants from academia and industry, we stated that recent advances in artificial intelligence have opened up new possibilities for each of these directions. In general, more and more researchers in networking and security look at AI-based methods which made this a timely event to assess and categorize the state of the art as well as work towards a roadmap for future research. The outcome of the discussions and the proposed research directions are presented in this report.

Subject Classification

ACM Subject Classification
  • Networks → Network security
  • Security and privacy → Intrusion/anomaly detection and malware mitigation
  • Security and privacy → Network security
  • Security and privacy → Systems security
Keywords
  • artificial intelligence
  • cybersecurity
  • intrusion detection
  • machine learning

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